Decision Support System for Mitigating Athletic Injuries

Q2 Computer Science
Kyle D. Peterson, L. Evans
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引用次数: 12

Abstract

Abstract The purpose of the present study was to demonstrate an inductive approach for dynamically modelling sport-related injuries with a probabilistic graphical model. Dynamic Bayesian Network (DBN), a well-known machine learning method, was employed to illustrate how sport practitioners could utilize a simulatory environment to augment the training management process. 23 University of Iowa female student-athletes (from 3 undisclosed teams) were regularly monitored with common athlete monitoring technologies, throughout the 2016 competitive season, as a part of their routine health and well-being surveillance. The presented work investigated the ability of these technologies to model injury occurrences in a dynamic, temporal dimension. To verify validity, DBN model accuracy was compared with the performance of its static counterpart. After 3 rounds of 5-fold cross-validation, resultant DBN mean accuracy surpassed naïve baseline threshold whereas static Bayesian network did not achieve baseline accuracy. Conclusive DBN suggested subjectively-reported stress two days prior, subjective internal perceived exertions one day prior, direct current potential and sympathetic tone the day of, as the most impactful towards injury manifestation.
减轻运动损伤的决策支持系统
摘要:本研究的目的是展示一种用概率图形模型动态建模运动相关损伤的归纳方法。动态贝叶斯网络(DBN)是一种著名的机器学习方法,它被用来说明体育从业者如何利用模拟环境来增强训练管理过程。作为常规健康和福祉监测的一部分,在整个2016年的比赛季节,对爱荷华大学的23名女学生运动员(来自3个未公开的团队)进行了常规运动员监测技术的定期监测。提出的工作调查了这些技术的能力,以模拟伤害发生在一个动态的,时间维度。为了验证有效性,将DBN模型的精度与静态模型的性能进行了比较。经过3轮5次交叉验证,得到的DBN平均准确率超过naïve基线阈值,而静态贝叶斯网络没有达到基线准确率。结论DBN提示,2天前主观报告的应激、1天前主观内感知的力道、当天的直流电电位和交感神经张力对损伤表现的影响最大。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
International Journal of Computer Science in Sport
International Journal of Computer Science in Sport Computer Science-Computer Science (all)
CiteScore
2.20
自引率
0.00%
发文量
4
审稿时长
12 weeks
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